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Transcript
Modeling foundation species in food webs
BENJAMIN BAISER,1,3, NATHANIEL WHITAKER,2
AND
AARON M. ELLISON1
1
Harvard University, Harvard Forest, 324 N. Main Street, Petersham, Massachusetts 01366 USA
Department of Mathematics and Statistics, University of Massachusetts at Amherst, 1424 Lederle Graduate Research Center,
Amherst, Massachusetts 01003-9305 USA
2
Citation: Baiser, B., N. Whitaker, and A. M. Ellison. 2013. Modeling foundation species in food webs. Ecosphere
4(12):146. http://dx.doi.org/10.1890/ES13-00265.1
Abstract. Foundation species are basal species that play an important role in determining community
composition by physically structuring ecosystems and modulating ecosystem processes. Foundation
species largely operate via non-trophic interactions, presenting a challenge to incorporating them into food
web models. Here, we used non-linear, bioenergetic predator-prey models to explore the role of foundation
species and their non-trophic effects. We explored four types of models in which the foundation species
reduced the metabolic rates of species in a specific trophic position. We examined the outcomes of each of
these models for six metabolic rate ‘‘treatments’’ in which the foundation species altered the metabolic rates
of associated species by one-tenth to ten times their allometric baseline metabolic rates. For each model
simulation, we looked at how foundation species influenced food web structure during community
assembly and the subsequent change in food web structure when the foundation species was removed.
When a foundation species lowered the metabolic rate of only basal species, the resultant webs were
complex, species-rich, and robust to foundation species removals. On the other hand, when a foundation
species lowered the metabolic rate of only consumer species, all species, or no species, the resultant webs
were species-poor and the subsequent removal of the foundation species resulted in the further loss of
species and complexity. This suggests that in nature we should look for foundation species to
predominantly facilitate basal species.
Key words: food web modeling; foundation species; metabolic rate; network; non-linear dynamics.
Received 20 August 2013; revised 5 October 2013; accepted 8 October 2013; final version received 30 October 2013;
published 9 December 2013. Corresponding Editor: D. P. C. Peters.
Copyright: Ó 2013 Baiser et al. This is an open-access article distributed under the terms of the Creative Commons
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the
original author and source are credited. http://creativecommons.org/licenses/by/3.0/
3
Present address: Department of Wildlife Ecology and Conservation, University of Florida, P.O. Box 110430, Gainesville,
Florida 32611-0430 USA.
E-mail: [email protected]
INTRODUCTION
tion species in ecological communities (reviewed
by Ellison et al. 2005, 2010, Van der Putten 2012).
Numerous field studies have shown that foundation species can alter trajectories of the
assembly of ecological communities (e.g., Gibson
et al. 2012, Schöeb et al. 2012, Butterfield et al.
2013, Martin and Goebel 2013, Orwig et al.
2013). However, general models of how foundation species affect ecological systems are
scarce and generally qualitative (Ellison and
Baiser, in press).
Foundation species (sensu Dayton 1972) are
basal species that structure ecological communities by creating physical structure and modulating ecosystem processes (Ellison et al. 2005).
Recent declines (e.g., Tsuga canadensis) and
extirpations (e.g., Castanea dentata) of foundation
species in terrestrial ecosystems have called
attention to the need for new methods for
identifying and quantifying the role of foundav www.esajournals.org
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December 2013 v Volume 4(12) v Article 146
BAISER ET AL.
Foundation species can interact trophically
within a community, but they exert their influence primarily through non-trophic effects (Ellison and Baiser, in press). Some examples of nontrophic actions of foundation species include:
altering local climates and microclimates (e.g.,
Schöeb et al. 2012, Butterfield et al. 2013);
changing soil temperature, moisture, and acidity
(e.g., Prevey et al. 2010, Lustenhouwer et al. 2012,
Martin and Goebel 2013); providing refuge for
prey species and perches for predators (e.g.,
Yakovis et al. 2008, Tovar-Sánchez et al. 2013);
and stabilizing stream banks and shorelines
against erosion (reviewed by Ellison et al.
2005). Because foundation species exert systemwide effects on biodiversity and ecosystem
functioning primarily through these (and other)
non-trophic interactions, it has proven difficult to
link effects of foundation species into theories of
the structure and function of food webs. Food
web theory aims to elucidate the persistence of
the types of complex, species-rich webs that we
see in nature (e.g., May 1972, Allesina and Tang
2012). Measures of network properties, such as
connectance, compartmentalization, and species
richness, as well as the strength of species
interactions, all can influence the stability and
persistence of food webs (e.g., May 1972, Dunne
et al. 2002, Gravel et al. 2011, Stouffer and
Bascompte 2011). Adding non-trophic interactions, such as those exhibited by foundation
species or mutualists in general, provides an
additional step towards understanding persistence and stability of ecological networks (Thebault and Fontaine 2010, Allesina and Tang 2012,
Kéfi et al. 2012)
Here, we adapt non-linear, bioenergetic predator-prey models to explore non-trophic roles of
foundation species in food webs. To make
explicit linkages between trophic and non-trophic interactions, we model the metabolic rate of
individual ‘‘species’’ as a function of foundation
species biomass. Metabolic rate is good proxy for
a wide variety of positive non-trophic species
interactions (sensu Kéfi et al. 2012), because
‘‘stressful conditions’’ may be reduced when
foundation species ameliorate temperature extremes, provide associated species with habitat
resources or shelters, or enhance their growth
rate (Schiel 2006, Shelton 2010, Gedan et al. 2011,
Angelini and Silliman 2012, Dijkstra et al. 2012,
v www.esajournals.org
Noumi et al. 2012, Butterfield et al. 2013).
We developed four different foundation species models to explore non-trophic effects of
foundation species in food webs. In each, the
foundation species influences target species at
different trophic positions in the food web: (1) a
basal model, in which the foundation species
reduces the metabolic rates of only other, albeit
non-foundation, basal species; (2) a consumer
model, in which the foundation species reduces
the metabolic rates of only consumers; (3) a total
model, in which the foundation species reduces
the metabolic rates of all species; and (4) a control
model, in which the foundation species is only
consumed and has no effect on the metabolic
rates of any associated species. We examined the
outcomes of each of these models for six
metabolic rate ‘‘treatments’’ in which the foundation species alters the metabolic rates of
associated species by one-tenth to ten times their
allometric baseline metabolic rates. For each
model simulation, we looked at how foundation
species influence different measures of food web
structure during community assembly and the
subsequent change of food web structure when
the foundation species was removed.
METHODS
We modeled dynamic ecological networks
using a four-step process (Brose et al. 2006,
Berlow et al. 2009, Kéfi et al. 2012): (1) model
initial network structure; (2) calculate body mass
for each species based on trophic level; (3)
simulate population dynamics using an allometric predator-prey model; and (4) add nontrophic interactions into the allometric predatorprey model.
Network structure
We used the niche model of Williams and
Martinez (2000) to designate trophic links in our
model food webs. The niche model is an
algorithm with two parameter inputs: species
richness (S ) and connectance (C ¼ L/S2, where L ¼
the number of trophic links). Each species in the
web has a niche value uniformly drawn from [0,
1] and a niche range that is placed on a onedimensional axis. Any one species whose niche
value falls within the niche range of another is
defined to be the latter’s prey (for specific details
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December 2013 v Volume 4(12) v Article 146
BAISER ET AL.
on the niche model see Williams and Martinez
2000). The niche model has been shown to
reproduce accurately a wide range of food web
network properties for many empirical webs
(Williams and Martinez 2000, Dunne et al. 2004,
Williams and Martinez 2008).
j; and fij is the fraction of biomass removed from
the resource biomass that is actually ingested.
The functional response, Fij, describes how
consumption rate varies as a function of prey
biomass. We used a type II functional response:
Fij ¼
Body mass
B0 þ
We calculated body mass, Mi, for species i as:
Mi ¼ Z T1 :
ð3Þ
In Eq. 3, xij is the uniform relative consumption
rate of consumer i preying on resource j (i.e., the
preference of consumer i for resource j ) when the
consumer has n total resources (x ij ¼ 1/n) and B0
is the half-saturation constant (i.e., resource
biomass at which consumer reaches half of its
maximum consumption rate). In all of our
models, B0 was set equal to 0.5.
Body size is an important component of both
predator-prey interactions (Warren and Lawton
1987, Woodward and Hildrew 2002, Brose et al.
2006) and metabolic functioning of organisms
(Brown et al. 2004). As a result, body size is an
important factor for energy flow throughout food
webs (Woodward et al. 2005). Predator-prey
body-size ratios found in empirical food webs
have been shown to stabilize dynamics in
complex networks (Brose et al. 2006). Thus, we
allometrically scaled the biological parameters ri,
xi, and yi in Eqs. 2a and 2b to body size (Brose et
al. 2006). We modeled the biological rates of
production, R, metabolism, X, and maximum
consumption rate, Y, using a negative-quarter
power-law dependence on body size (Brown et
al. 2004):
ð1Þ
Allometric predator–prey model
We simulated food web population dynamics
using an allometric predator-prey model (Yodzis
and Innes 1992, Williams and Martinez 2004,
Brose et al. 2006). Following Brose et al. (2006):
ð2aÞ
X
dBi
¼ xi ðMi ÞBi þ
xi ðMi Þyi Bi Fij ðBÞ
dt
j¼resources
ð2bÞ
X xj ðMj Þyj Bj Fji ðBÞ
:
eji fji
j¼consumers
Eq. 2a describes change in biomass, B, of primary
producer species i, and Eq. 2b describes changes
in B of consumer i. All model variables are listed
and defined in Table 1.
For primary producer species i, ri is its massspecific maximum growth rate; Mi is its individual body mass; and Gi is its logistic growth rate:
Gi ¼ 1 (Bi/K ) and K is the carrying capacity (in
our model, K ¼ 1). Both for primary producers
and consumers, the mass-specific metabolic rate
for species i is xi. For consumers, yi is the
maximum consumption rate of species i relative
to its metabolic rate; eji is the assimilation
efficiency for species i when consuming species
v www.esajournals.org
:
xik Bk
k¼resources
In Eq. 1, Z is the predator-prey biomass ratio and
T is the average trophic level of species i
calculated using the prey-averaged method
(Williams and Martinez 2004). We set basal
species M to unity and used a predator-prey
biomass ratio of Z ¼ 102. We used body mass to
allometrically scale biological parameters in the
predator-prey model.
dBi
¼ ri ðMi ÞGi Bi xi ðMi ÞBi
dt
X xj ðMj Þyj Bj Fji ðBÞ
eji fji
j¼consumers
xij Bj
X
RP ¼ ar MP0:25
ð4aÞ
XC ¼ ax MC0:25
ð4bÞ
YC ¼ ay MC0:25 :
ð4cÞ
In Eqs. 4a–4c, subscripts P and C correspond to
producers and consumers respectively; ar, ax, and
ay are allometric constants; and M is the body
mass of an individual (Yodzis and Innes 1992).
The time scale of the system is specified by fixing
the mass-specific growth rate, ri, to unity.
Following this, we normalized the mass-specific
metabolic rate, xi, for all species in the model by
time scale and in turn, we normalized the
maximum consumption rate, yi, by the metabolic
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Table 1. Model variables.
Parameter
Description
Value or Equation
Mi
Z
T
Body mass of species i
Predator-prey biomass ratio
Trophic level
Bi
ri
K
Gi
xi
yi
eji
fij
Fij
wij
Biomass of species i
Mass specific growth rate of species i
Carrying capacity
Logistic growth rate of species i
Mass specific metabolic rate of species i
Maximum consumption rate of species i
Assimilation efficiency for species i when consuming species j
The fraction of species j that is ingested by species i
Functional response for species i feeding on species j
The uniform relative consumption rate of consumer i preying
on resource
Half-saturation constant
Production
Metabolism
Maximum consumption rate
Allometric constant
Allometric constant
Metabolic rate in the absence of the foundation species
B0
R
X
Y
ar
ax
xa
xfsp
Ba
Metabolic rate of target species in the presence of the
foundation species
Typical biomass for the foundation species
ð5aÞ
xi ¼
XC ax MC
¼
RP ar MP
yi ¼
YC ay
¼ :
XC ax
0.5
Eq. 4a
Eq. 4b
Eq. 4c
1
0.314
Depends on model run; see Exploring
the parameter space
Depends on model run; see Exploring
the parameter space
1
dxi xfsp B þ xa Ba
¼
:
dB
B þ Ba
rates:
ri ¼ 1
Eq. 1
102
Calculated using the prey-averaged
method
Initial draw from Uniform [0.5, 1]
1
1
1 (Bi/K )
0.01
8
0.85 for carnivores; 0.45 for herbivores
1
Eq. 3
1/number of prey items
ð6Þ
In Eq. 6, xfsp is the metabolic rate of the target
species in the presence of the foundation species;
xa is the metabolic rate of the target species in the
absence of the foundation species (i.e., baseline
metabolic rate, Eq. 5b); B is the biomass density
of the foundation species; and Ba is the ‘‘typical’’
(i.e., approximate average across trial runs)
biomass density for the foundation species. The
metabolic rate of species i, xi, decreases from xa
when B ¼ 0 to an asymptote at xfsp when B is
large (we assume that xfsp , xa because the
foundation species reduces the metabolic rates of
its associated species).
0:25
ð5bÞ
ð5cÞ
We then entered the allometrically scaled
parameters for ri, xi, and yi into Eqs. 2a and 2b,
yielding an allometrically scaled, dynamic predator-prey model. We set the allometric constants
to be yi ¼ 8, eij ¼ 0.85 for carnivores and eij ¼ 0.45
for herbivores, ar ¼ 1, and ax ¼ 0.314 (Yodzis and
Innes 1992, Brown et al. 2004, Brose et al. 2006).
Four foundation species models
Foundation species and non-trophic interactions
We varied the number and position of nontrophic interactions in four different ways (Fig.
1). In the control model, there are no non-trophic
interactions (i.e., the species designated as the
foundation species has only trophic interactions).
In the basal model, the foundation species
influences the metabolic rate of all basal species.
In the consumer model, the foundation species
influences the metabolic rate of all consumers
(i.e., non-basal species). Finally, in the total
For each food web, we randomly designated
one basal species as a foundation species. Each
foundation species engaged in non-trophic interactions with a given number of target species in a
food web, depending on the model described in
the next section. The foundation species alters the
metabolic rate (x) of a target species with which it
interacts following a general saturating function
(after Otto and Day 2007):
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December 2013 v Volume 4(12) v Article 146
BAISER ET AL.
Fig. 1. Schematic diagrams of the four foundation species models: (A) control, (B) basal, (C) consumer, (D)
total. White nodes are basal foundation species, gray nodes are other basal species, and black nodes are
consumers. Solid black lines with arrows represent trophic interactions and dashed lines are non-trophic
interactions (i.e., reduction in metabolic rate).
remaining webs and ran the ‘‘foundation species
removal’’ simulation for an additional 2,000 timesteps. At t ¼ 4,000, we again calculated the
number of species present and the nine additional measures of food web structure (Table 2).
Food web metrics (Table 2) were calculated
using Network 3D (Williams 2010). For the food
web assembly analysis (i.e., the first 2,000 time
steps of each model run), we tested the effect of
each model (foundation species effects) using
analysis of covariance (ANCOVA). In the
ANCOVA, foundation species model was the
factor, and log (metabolic rate þ 1) was the
covariate. Because measures of food web structure are often correlated (Vermaat et al. 2009), we
used principle components analysis (prcomp in
R version 2.13.1) to reduce the food web metrics
into two orthogonal principle components that
were used as response variables in the ANCOVA.
In this analysis, we did not include food webs
that collapsed (i.e., had zero species). ANCOVA
was implemented using glm in R; a Poisson link
function was used when species richness was the
response variable, and a Gaussian link function
was used for the analysis of food web metrics
model, the foundation species influences the
metabolic rate of all species in the food web.
Simulations and analysis
We created 100 niche-model webs, in all of
which we set S ¼ 30 and C ¼ 0.15. We
parameterized allometric predator-prey models
with an initial biomass (B i ) vector drawn
randomly from a uniform distribution: Bi ;
Uniform[0.5, 1]. The initial value of Bi was the
same for any given food web in all four of the
foundation species models. We solved Eqs. 2a
and 2b using the standard fourth-order RungeKutta method with a time step of 0.001. For each
model run, we ran the initial ‘‘food web
assembly’’ simulations for 2,000 time steps. A
species was considered extinct and removed
from model simulations (i.e., Bi ¼ 0) when Bi ,
1030 (Brose et al. 2006, Berlow et al. 2009). At the
end of this ‘‘assembly’’ period we calculated the
number of species present and nine additional
measures of food web structure (Table 2) and
then removed food webs with unconnected
species or chains from further simulation. We
next ‘‘removed’’ the foundation species from the
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December 2013 v Volume 4(12) v Article 146
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Table 2. Metrics of food web structure.
Metric
C
S
LS
ClusterCoeff
PathLen
Top
Int
Omniv
Herbiv
Basal
Definition
connectance, or the proportion of possible links realized. C ¼ L/S2, where L is number of links and S is the
number of species
species richness
linkage density ¼ L/S, number of links per species
clustering coefficient, probability that two taxa linked to the same taxon are also linked
characteristic path length, the mean shortest set of links (where links are treated as
undirected) between species pairs
percentage of top species in a web (taxa have no predators)
percentage of intermediate species in a web (taxa with both predators and prey)
percentage of omnivores in a web (taxa that feed on more than one trophic level)
percentage of herbivores in a web (taxa that only prey on basal species)
percentage of primary producers in a web (taxa that have no prey)
(principal axis scores).
For the foundation species removal analyses
(i.e., time steps 2,001–4,000), we calculated
standardized change (Dz ¼ zt¼2001-zt¼4000/zt¼2001)
in species richness and food web metrics (principal axis scores) between the end of food web
assembly (t ¼ 2,001) and the end of the
foundation species removal (t ¼ 4,000) because
webs had different species richness at the time
the foundations species was removed (t ¼ 2,000).
As described above, we then used ANCOVA to
test the effects of each model.
variation observed between basal metabolic rates
and maximum metabolic rates in empirical
studies (Nagy 1987, Gillooly et al. 2001).
In total, we simulated 100 webs for each
combination of the four foundation species
models and the six metabolic treatments: 100 3
4 3 6 ¼ 2,400 food web simulations. Model code is
available from the Harvard Forest Data Archive
(http://harvardforest.fas.harvard.edu/dataarchive), dataset HF-211.
RESULTS
Assembly
Exploring the parameter space
Species richness.—Species richness varied with
metabolic rate (F1, 1300 ¼ 224.05, P , 0.001) and
foundation species model (F3, 1300 ¼ 13.33, P ,
0.001), and there was a significant interaction
between the model type and metabolic rate (F3,
1300 ¼ 49.37, P , 0.001) (Fig. 3A). Species richness
increased with increasing metabolic rate in the
basal model webs (slope ¼ 0.082, t ¼ 2.39, P ,
0.02), whereas it decreased with increasing
metabolic rate in webs derived from the other
three models (total: slope ¼0.51, t ¼11.83, P ,
0.001; consumer: slope ¼ 0.77, t ¼ 16.41, P ,
0.001; control: slope ¼0.29, t ¼7.43, P , 0.001).
Webs collapsed entirely (i.e., species richness ¼ 0
at t ¼ 2,000 model time steps) only in the 103
treatment; these collapses occurred in the total
(33%), control (42%), and consumer (2%), but not
in the basal foundation species models.
Food web structure.—The first two principal
components of food web structure (Fig. 4)
accounted for 67% of the variation across model
food webs (Table 3). Model webs with low PC-1
scores were relatively species-rich with high C,
LS, and cluster coefficients, and also had a high
An important assumption in our models is that
species have higher metabolic rates in the
absence of the foundation species. However, it
was not clear how to set the baseline metabolic
rate, xa, (i.e., how poorly should any particular
species perform in the absence of the foundation
species) and how much the foundation species
should improve [¼reduce] the metabolic rate
(xfsp). To explore a range of reasonable possibilities, we ran one set of simulations in which xa
was set equal to the allometrically scaled
metabolic rate in Eq. 5b and xfsp was set equal
to one of 0.5, 0.2 or, 0.1 of xa (Fig. 2A; referred to
henceforth as 0.53, 0.23, and 0.13 treatments). In
this first set of simulations, species start at the
(allometric) baseline and the presence of the
foundation species further reduces the metabolic
rates of species associated with it. In the second
set of simulations, xfsp was set equal to the
allometrically scaled metabolic rate in Eq. 5b and
xa was set equal to one of 2, 5, or 10 times xfsp
(Fig. 2B; referred to henceforth as 23, 53, and 103
treatments). Our metabolic rates encompass the
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BAISER ET AL.
Fig. 2. Saturating functions (Eq. 6) relating metabolic rate to foundation species biomass. (A) In the absence of a
foundation species, species have the baseline, allometrically scaled metabolic rate (dashed line; Eq. 5b). Increasing
the biomass of the foundation species results in an asymptotic decline in metabolic rate to 0.53 (green), 0.23
(magenta), or 0.013 (cyan) the baseline. (B) When foundation species biomass ¼ 0, species have metabolic rates
103 (blue), 53 (red), or 23 (orange) the baseline, allometrically scaled metabolic rate (dashed line). As the biomass
of the foundation species increases, metabolic rate declines asymptotically to the baseline. These functions are the
six metabolic rate treatments that we applied to the predator-prey model.
fraction of intermediate species and omnivores.
Conversely, webs with high PC-1 scores were
species-poor with low C and LS; these webs also
had long path lengths and large fractions of top,
basal, and herbivore species. Webs with high PC2 scores were species-rich with low C, and had
large proportions of top species, low proportions
of basal species, and low cluster coefficients.
Webs with low PC-2 scores were species-poor
with high C and cluster coefficients, and had a
large fraction of basal species.
PC-1 scores of food web structure were
significantly associated with model type (F3, 1224
¼ 10.78, P , 0.001) and the interaction between
model type and metabolic rate (F3, 1224 ¼ 15.27, P
, 0.001), but not with metabolic rate alone
(F1, 1224 ¼ 1.86, P ¼ 0.17) (Fig. 3B). PC-1 scores
decreased with metabolic rate in basal model
webs (slope ¼ 1.40, t ¼ 3.99, P , 0.01), and
total and control webs were not significantly
different from the basal model webs (total: slope
¼0.47, t ¼ 1.72, P ¼ 0.08; control: slope ¼1.28, t
¼ 0.2, P ¼ 0.84.). In contrast, PC-1 scores increased
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with metabolic rate in the consumer model (slope
¼ 1.55, t ¼ 6.09, P , 0.001).
Both metabolic rate (F1, 1224 ¼ 23.42, P , 0.001)
and model type (F3, 1224 ¼ 6.24, P , 0.001) had
significant effects on PC-2 scores, and the
interaction term was also significant (F3, 1224 ¼
7.71, P , 0.001) (Fig. 3C). PC-2 scores significantly decreased with metabolic rate in the
control model webs (slope ¼ 1.45, t ¼ 4.72, P
, 0.001), whereas the PC-2 scores of the webs
generated by the other three foundation species
models did not change across metabolic rates
(basal: slope ¼ 0.02, t ¼ 0.13, P ¼ 0.90; total:
slope ¼0.44, t ¼1.43, P ¼ 0.15, consumer: slope
¼ 0.38, t ¼ 1.35, P ¼ 0.18).
Foundation species removal
Species richness.—Species loss varied across
metabolic rate (F1, 1004 ¼ 116.54, P , 0.001) and
foundation species model (F3, 1004 ¼ 22.41, P ,
0.001) (Fig. 5A). The interaction term (metabolic
rate treatment 3 type of foundation species
model) also was significant (ANCOVA: F3, 1004 ¼
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BAISER ET AL.
Fig. 3. ANCOVA plots illustrating species richness (A) and principal axis scores (B, C) of food web structure
after food web assembly (at t ¼ 2,000 modeled time steps) as a function of metabolic rate and the four types of
foundation species models. Green lines and points correspond to the basal model, pink ¼ consumer model, blue ¼
total model, and orange ¼ control model.
22.27, P , 0.001). Species loss in the total (slope ¼
0.35, t ¼ 8.03, P , 0.001), control, (slope ¼ 0.11, t ¼
1.97, P , 0.05), and consumer models (slope ¼
0.15, t ¼ 3.34, P , 0.001) increased with metabolic
rate. The species loss for basal model webs was
not influenced by metabolic rate (slope ¼ 0.03, t ¼
1.11, P ¼ 0.28). The 103 treatment was the only
treatment in which webs completely collapsed
(i.e., had a final species richness of zero) after the
removal of the foundation species. Web collapse
occurred in the 92% of the total and 40% of the
control webs.
Food web structure.—The first two principal
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components accounted for 60% of the variation in
food web structure after the removal of the
foundation species (Table 3). Model webs with
high PC-1 scores lost a greater proportion of
species and showed relatively larger decreases in
LS and cluster coefficients (Fig. 6). These structural changes were due primarily to a decrease in
the proportion of intermediate and omnivore
species and an increase in the proportion of basal
species after foundation species removal. Webs
with low PC-1 scores lost fewer species and
experienced smaller declines or increases in LS
and cluster coefficients. These webs also had
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December 2013 v Volume 4(12) v Article 146
BAISER ET AL.
Fig. 4. Principal component biplots of food web metrics for assembled food webs (at t ¼ 2,000 modeled time
steps). Illustrations along each PC axis depict representative individual webs.
larger proportions of intermediate and omnivore
species. Webs with high PC-2 scores lost a greater
proportion of species, showed an increase in C,
and decreased path lengths. Webs with low PC-2
scores lost fewer species, experienced a decrease
in C, and increased in path length.
Metabolic rate (F1, 974 ¼ 14.36, P , 0.001),
foundation species model type (F3, 974 ¼ 21.36, P
Table 3. Principal component loadings for food web structure after food web assembly (t ¼ 2,000 modeled time
steps) and after foundation species removal (t ¼ 4,000 time steps).
After assembly (t ¼ 2,000)
After foundation species removal (t ¼ 4,000)
Metric
PC-1
(52%)
PC-2
(15%)
PC-1
(41%)
PC-2
(19%)
S
LS
C
Top
Int
Basal
Herbiv
Omniv
PathLen
ClusterCoeff
0.34
0.40
0.22
0.26
0.40
0.32
0.28
0.36
0.26
0.27
0.40
0.17
0.46
0.32
0.11
0.38
0.20
0.19
0.31
0.41
0.36
0.45
0.16
0.23
0.41
0.39
0.17
0.34
0.18
0.30
0.39
0.02
0.66
0.06
0.15
0.15
0.06
0.00
0.59
0.14
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BAISER ET AL.
Fig. 5. ANCOVA plots illustrating species richness (A) and principal axis scores (B, C) of food web structure
after foundation species removal (at t ¼ 4,000 modeled time steps) as a function of metabolic rate and the four
types of foundation species models. Green lines and points correspond to the basal model, pink ¼ consumer
model, blue ¼ total model, and orange ¼ control model.
, 0.001) and their interaction (F3, 974 ¼ 6.61, P ,
0.001) significantly influenced PC-1 scores (Fig.
5B). PC-1 scores increased with metabolic rate in
webs generated using the total (slope ¼ 1.35, t ¼
3.20, P , 0.01), control, (slope ¼ 1.31, t ¼ 3.31, P ,
0.001), and consumer models (slope ¼ 1.35, t ¼
3.88, P , 0.001). However, PC-1 scores for basal
model webs were not influenced by metabolic
rate (slope ¼ 0.59, t ¼ 1.63, P ¼ 0.10). PC-2
scores varied with metabolic rate (F1, 974 ¼ 26.79,
P , 0.001), foundation species model (F3, 974 ¼
5.44, P , 0.01), and their interaction (F3, 974 ¼ 8.59,
P , 0.001) (Fig. 5C). PC-2 scores increased with
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metabolic rate in basal (slope ¼ 0.7, t ¼ 2.84, P ,
0.01) and consumer (slope ¼ 1.57, t ¼ 2.55, P ,
0.05) model webs, but decreased with metabolic
rate in total model webs (slope ¼0.14, t ¼2.03,
P , 0.05) and showed no change in control webs
(slope ¼ 0.03, t ¼ 1.87, P ¼ 0.06).
DISCUSSION
Our simulations have illustrated that foundation species can play an important role in the
assembly and collapse of food webs. By definition, foundation species influence community
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December 2013 v Volume 4(12) v Article 146
BAISER ET AL.
Fig. 6. Principal component biplots of standardized change in food web metrics for food webs after foundation
species removal (i.e., Dz ¼ zt¼2001-zt¼4000/zt¼2001). Text along each PC axis shows general change in food web
complexity and richness associated with each axis.
species from the consumer, total, and control
model webs resulted in a greater loss of species
and complexity than in the basal model webs.
One potential explanation for the species-rich
complex food webs produced by basal models
and the species-poor simplified webs produced
by the consumer and total models may be found
in the population dynamics of the system. When
a foundation species lowers the metabolic rate of
the consumers (top predators and intermediate
consumers in both the consumer and total
models), consumer populations reach higher
abundances, which in turn can lead to stronger
predator-prey interactions (Holling 1965,
Abrams and Ginzburg 2000). Strong interactions
can lead to unstable predator-prey dynamics and
result in the extinction of both the predator and
the prey species (May 1972, McCann et al. 1998).
In the basal model, lower metabolic rates
increased energy for growth and reproduction,
allowing basal species to withstand transient
composition and functioning largely through
non-trophic interactions (Ellison et al. 2005).
Here, we have shown that the trophic position
of the species that receive benefits (in this case a
decrease in metabolic rate) from the presence of a
foundation species can influence the food web
assembly process and the response of a food web
to the loss of a foundation species. When a
foundation species lowered the metabolic rate of
only basal species the resultant webs were
complex and species-rich. In general, basal model
webs also were robust to foundation species
removals, retaining high species richness and
complexity. On the other hand, when a foundation species lowered the metabolic rate of only
consumer species (our consumer model), all
species (total model), or no species (control
model) the resultant webs were species-poor
and the consumer webs had low complexity
(i.e., low C, LS, clustering coefficient). Furthermore, the subsequent removal of the foundation
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December 2013 v Volume 4(12) v Article 146
BAISER ET AL.
dynamics of early assembly or low initial
population abundances. Once gaining a foothold,
even non-foundational basal species can provide
multiple energy pathways to species at higher
trophic levels. And once the foundation species
was removed, the other basal species were
already established and maintained energy pathways to higher trophic levels, limiting further
extinctions. This mechanism is also consistent
with the standard facilitation model of succession
(Connell and Slatyer 1977), where later-successional (facilitated) species can maintain high
abundances even after early-successional species
have disappeared. Two important differences,
however, are that in the field, foundation species
persist in the system much longer than earlysuccessional species, and associated species
composition changes dramatically following
foundation species removal (e.g., Orwig et al.
2013).
In addition to the trophic position of the target
species that a foundation species influences, the
magnitude of the metabolic rates of the associated species in the absence of the foundation
species (or more generally, the cost of not having
the foundation species) was also important in
determining food web structure and the response
of food webs to foundation species removal.
When metabolic rates were highest in the
absences of foundation species (the 103 treatment), webs lost the most species both during
assembly and after removal of the foundation
species. The 103 treatment also was the only one
for which webs collapsed entirely (to zero
species). This collapse was observed most frequently in the control webs, in which the
foundation species did not have any non-trophic
interactions with other species. Interestingly,
basal model webs in the 103 metabolic rate group
maintained species richness at levels similar to
those seen in the lower metabolic rate treatments.
This result is consistent with that seen in the food
web assembly dynamics, and implies that facilitation of basal species by foundation species can
overcome even the highest metabolic rates
(costs). Overall, our results suggest that foundation species that influence other basal species will
result in robust food webs, whereas those that
influence consumers lead to the loss of species
and complexity both during the assembly process and after foundation species removal.
v www.esajournals.org
Additionally, these effects are magnified when
metabolic costs to other species increase in the
absence of the foundation species.
In our models, foundation species exerted
influence by lowering metabolic rates for certain
species. This is only one type of non-trophic
interaction that can occur in a food web, and it is
likely that foundations species have many other
non-trophic interactions and effects (e.g., providing refuge from predators, facilitating establishment; Kéfi et al. 2012) that deserve further
exploration. In addition, in all of our models,
foundation species had a positive influence on all
species at similar trophic positions. In real food
webs, however, this generalization is unlikely to
hold, as foundation species can have different
effects on species that share the same trophic
position and may also have negative effects on
some species in the food web (e.g., Ellison et al.
2005b, Prevey et al. 2010, Sackett et al. 2011, Kane
et al. 2011). Furthermore, the effects of foundation species in our simulations are strongest
when associated species do really poorly without
the foundation species present (i.e., the 53
and103 metabolic treatments). This result implies
that the role of a foundation species largely
depends on the magnitude of its influence, but
weak trophic (McCann et al. 1998, Neutel et al.
2002, Rooney and McCann 2012) and facilitative
links (Allesina and Tang 2012) are also import in
maintaining network structure and dynamics.
Thus, measuring the influence of foundation
species on other species in the food web through
experimental removal studies (e.g., Ellison et al.
2010, Sackett et al. 2011) will continue to be an
important component of understanding foundation species roles in the assembly and collapse of
food webs.
Future exploration of foundation species in
both modeled and real food webs should
consider how foundations species differentially
influence species in similar trophic positions, the
threshold of metabolic rates (or other factors that
foundations species influence) at which food
webs respond, and non-trophic interactions that
influence model parameters other than metabolic
rate. Nonetheless, this first theoretical exploration of foundation species in a food web context
shows that we should look for foundation species
to strongly influence basal species, leading to
robust species-rich food webs that are the least
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ACKNOWLEDGMENTS
This research was supported by grants to AME from
the US NSF (0541680 and 1144056) and US DOE (DEFG02-08ER64510), and the LTER program at Harvard
Forest, supported by NSF grants 0620443 and 1237491.
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